On Wed, 7 Apr 2010, ONKELINX, Thierry wrote:
> Dear all,
>
> We are analysing some survey data and we are not sure if we are using
> the correct syntax for our design.
>
> The population of interest is a set of 4416 polygons with different
> sizes ranging from 0.003 to 45.6 ha, 7460 ha in total. Each polygon has
> a binary attribute (presence/absence) and we want to estimate the
> probability of presence in the population.
>
> We used sampling with replacement weighted by the area of the polygon.
> The population was stratified using 2 variables: block and type. Each of
> the 14 blocks is a 20 by 50 km geographical region. Type is a two level
> factor. Not every level is present in each block. Each block has a
> Status attribute with two levels: medium (9 blocks) or good (5 blocks).
> Besides the overall ratio, we would like the estimate the ratio per
> Status.
> The samplesize per stratum was calculated with epi.stratasize() from the
> epiR package. The population size in the 21 strata ranges from 1 to
> 1158. The sample size ranges from 0 in the blocks with very few polygons
> (<20), 1 in blocks with a low number of polygon (20 - 50) and up to 25
> polygons in the largest strata.
That sounds strange. If you have a stratified sample and have set the sample
size in some strata to be zero, you cannot possibly learn anything about those
strata and so you can't get unbiased population estimates. In order to get
unbiased estimates and valid standard errors you need at least two samples per
stratum.
You're going to have to combine some of the strata so that each stratum has
at least two observations. Since your design only makes sense if you assume the
small, unsampled, strata are similar to some of the larger strata, it should be
possible for you to combine them.
> Does the syntax below represents the data structure above? Any comments
> are welcome.
>
> library(survey)
> svydesign(
> id = ~ 1, #no clustering
> weights = ~ Area, #weighted by the area of the polygon
> strata = ~ Status + Block + Type,
> nest = TRUE
> )
You want strata = ~interaction(Block,Type,drop=TRUE), which specifies a single
stage of sampling in which the strata are combinations of Block and Type. The
fact that you need drop=TRUE is a bug, which I will fix.
> # Is Area a correct weighting factor? Or should we use the area divided
> by the sum of the total area (per stratum?)
It's not clear to me from your description whether the probability of
sampling a particular region is proportional to its Area or inversely
proportional to its Area. If the probability is proportional to Area, the
weight would be 1/Area
svydesign(
id = ~ 1, #no clustering
weights = ~ I(1/Area), #weighted by the area of the polygon
strata = ~ interaction(Block, Type,drop=TRUE),
nest = TRUE
)
> # The code above runs. But when we omit "Status" from the strata,
then
> we get an error: "a stratum has only 1 PSU". Shouldn't we get
the same
> error with the code above?
>
> #with finity population correction
> svydesign(
> id = ~ 1, #no clustering
> weights = ~ Area, #weighted by the area of the polygon
> strata = ~ Status + Block + Type,
> fpc ~ nStatus + nBlock + nType,
> nest = TRUE
> )
> #We are not sure what to use for nStatus, nBlock and nType. Is it the
> number of levels of that stratum (nStatus = 2)? The number of levels in
> the stratum below (nStatus = length(unique(Block)) per level of Status,
> nType = number of polygons per Status:Block:Type)? The total number of
> polygons in that stratum?
This is easier when you get the right strata. There should be a single fpc
variable, which should be equal to the number of polygons in the population for
that stratum.
> To call in the statistician after the experiment is done may be no more
> than asking him to perform a post-mortem examination: he may be able to
> say what the experiment died of.
> ~ Sir Ronald Aylmer Fisher
Indeed.
-thomas
Thomas Lumley Assoc. Professor, Biostatistics
tlumley at u.washington.edu University of Washington, Seattle